Scientific Reports (Apr 2022)

ODACH: a one-shot distributed algorithm for Cox model with heterogeneous multi-center data

  • Chongliang Luo,
  • Rui Duan,
  • Adam C. Naj,
  • Henry R. Kranzler,
  • Jiang Bian,
  • Yong Chen

DOI
https://doi.org/10.1038/s41598-022-09069-0
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 8

Abstract

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Abstract We developed a One-shot Distributed Algorithm for Cox proportional-hazards model to analyze Heterogeneous multi-center time-to-event data (ODACH) circumventing the need for sharing patient-level information across sites. This algorithm implements a surrogate likelihood function to approximate the Cox log-partial likelihood function that is stratified by site using patient-level data from a lead site and aggregated information from other sites, allowing the baseline hazard functions and the distribution of covariates to vary across sites. Simulation studies and application to a real-world opioid use disorder study showed that ODACH provides estimates close to the pooled estimator, which analyzes patient-level data directly from all sites via a stratified Cox model. Compared to the estimator from meta-analysis, the inverse variance-weighted average of the site-specific estimates, ODACH estimator demonstrates less susceptibility to bias, especially when the event is rare. ODACH is thus a valuable privacy-preserving and communication-efficient method for analyzing multi-center time-to-event data.